LGMLMay 24, 2024

On the Identification of Temporally Causal Representation with Instantaneous Dependence

arXiv:2405.15325v215 citationsh-index: 20
Originality Highly original
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This work addresses a key limitation in temporally causal representation learning for real-world scenarios where instantaneous dependencies are common, offering a more practical approach for fields like motion forecasting.

The paper tackles the problem of identifying latent causal processes from time series data with instantaneous dependencies, proposing the IDOL framework that uses sparse influence constraints and achieves identifiability without requiring interventions or grouped observations, with experimental validation on simulation datasets and human motion forecasting benchmarks.

Temporally causal representation learning aims to identify the latent causal process from time series observations, but most methods require the assumption that the latent causal processes do not have instantaneous relations. Although some recent methods achieve identifiability in the instantaneous causality case, they require either interventions on the latent variables or grouping of the observations, which are in general difficult to obtain in real-world scenarios. To fill this gap, we propose an \textbf{ID}entification framework for instantane\textbf{O}us \textbf{L}atent dynamics (\textbf{IDOL}) by imposing a sparse influence constraint that the latent causal processes have sparse time-delayed and instantaneous relations. Specifically, we establish identifiability results of the latent causal process based on sufficient variability and the sparse influence constraint by employing contextual information of time series data. Based on these theories, we incorporate a temporally variational inference architecture to estimate the latent variables and a gradient-based sparsity regularization to identify the latent causal process. Experimental results on simulation datasets illustrate that our method can identify the latent causal process. Furthermore, evaluations on multiple human motion forecasting benchmarks with instantaneous dependencies indicate the effectiveness of our method in real-world settings.

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